This paper provides a new insight into unsupervised feature extraction techniques based on kernel subspace models. The data projected onto kernel subspace models are new data representations which might be better suited for classification. The kernel subspace models are always described exploiting the dual form for the basis vectors which requires that the training data must be available even during the test phase. By exploiting an incomplete Cholesky decomposition of the kernel matrix, a computationally less demanding implementation is proposed. Online benchmark data sets allow the evaluation of these feature extraction methods comparing the performance of two classifiers which both have as input either the raw data or the new representati...
Abstract We propose linear programming formulations of support vector machines (SVM). Unlike standar...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used pre-pro...
Kernel Principal Component Analysis (KPCA) has proven to be a versatile tool for unsupervised learni...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used preproc...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used pre-pro...
Abstract: Feature extraction and dimensionality reduction are impor-tant tasks in many fields of sci...
Kernel techniques became popular due to and along with the rising success of Support Vector Machines...
Kernel Principal Component Analysis (KPCA) has proven to be a versatile tool for unsupervised learni...
Kernel methods have been applied successfully in many data mining tasks. Subspace kernel learning wa...
Using the kernel trick idea and the kernels-as-features idea, we can construct two kinds of nonlinea...
We address the problem of feature selection in a kernel space to select the most discriminative and ...
How to use kernel methods in practice.How to control the model complexity.Kernel approximation as a ...
We show that the relevant information about a classification problem in feature space is contained u...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...
Abstract We propose linear programming formulations of support vector machines (SVM). Unlike standar...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used pre-pro...
Kernel Principal Component Analysis (KPCA) has proven to be a versatile tool for unsupervised learni...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used preproc...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used pre-pro...
Abstract: Feature extraction and dimensionality reduction are impor-tant tasks in many fields of sci...
Kernel techniques became popular due to and along with the rising success of Support Vector Machines...
Kernel Principal Component Analysis (KPCA) has proven to be a versatile tool for unsupervised learni...
Kernel methods have been applied successfully in many data mining tasks. Subspace kernel learning wa...
Using the kernel trick idea and the kernels-as-features idea, we can construct two kinds of nonlinea...
We address the problem of feature selection in a kernel space to select the most discriminative and ...
How to use kernel methods in practice.How to control the model complexity.Kernel approximation as a ...
We show that the relevant information about a classification problem in feature space is contained u...
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis,...
Abstract We propose linear programming formulations of support vector machines (SVM). Unlike standar...
Kernel based nonlinear Feature Extraction (KFE) or dimensionality reduction is a widely used pre-pro...
Kernel Principal Component Analysis (KPCA) has proven to be a versatile tool for unsupervised learni...